Skip to main content
  • For Students
  • For Industry
  • For Members
  • Accessibility
  • Login
MIT CSAIL
  • Research
  • People
  • News
  • Events
  • About
MIT LOGO Created with Sketch.
  • Research
  • People
  • News
  • Events
  • About
  • For Students
  • For Industry
  • For Members
  • Accessibility
  • Login
  • Contact
  • Press Requests
  • Accessibility

News

Researchers introduced a new family of physics-inspired generative models termed PFGM++ that unifies diffusion models and Poisson Flow Generative Models (PFGM) for better pattern recognition (Credits: Alex Shipps/MIT CSAIL via Midjourney).

From physics to generative AI: An AI model for advanced pattern generation

A novel approach allows multiple language models to collaborate, debating over several rounds, to converge on a unified and refined response (Credit: Alex Shipps/MIT CSAIL via Midjourney).

Multi-AI collaboration helps reasoning and factual accuracy in large language models

MIT researchers introduce Lightning, a reconfigurable photonic-electronic smartNIC that serves real-time deep neural network inference requests at 100 Gbps (Credits:Alex Shipps/MIT CSAIL via Midjourney).

System combines light and electrons to unlock faster, greener computing

Spotlighted News

From physics to generative AI: An AI model for advanced pattern generation
Multi-AI collaboration helps reasoning and factual accuracy in large language models
System combines light and electrons to unlock faster, greener computing

MIT CSAIL

Massachusetts Institute of Technology

Computer Science & Artificial Intelligence Laboratory

32 Vassar St, Cambridge MA 02139

  • Contact
  • Press Requests
  • Accessibility
MIT Schwarzman College of Computing